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Coding SNPs as Intrinsic Markers for Sample Tracking in Large-Scale Transcriptome Studies
Author(s) -
Weihong Xu,
Hong Gao,
Junhee Seok,
Julie Wilhelmy,
Michael Mindrinos,
Ronald W. Davis,
Wenzhong Xiao
Publication year - 2012
Publication title -
biotechniques
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.617
H-Index - 131
eISSN - 1940-9818
pISSN - 0736-6205
DOI - 10.2144/0000113879
Subject(s) - transcriptome , outlier , mahalanobis distance , computational biology , single nucleotide polymorphism , biology , dna microarray , gene expression profiling , cluster analysis , coding region , genetics , computer science , gene , artificial intelligence , gene expression , genotype
Large-scale transcriptome profiling in clinical studies often involves assaying multiple samples of a patient to monitor disease progression, treatment effect, and host response in multiple tissues. Such profiling is prone to human error, which often results in mislabeled samples. Here, we present a method to detect mislabeled sample outliers using coding single nucleotide polymorphisms (cSNPs) specifically designed on the microarray and demonstrate that the mislabeled samples can be efficiently identified by either simple clustering of allele-specific expression scores or Mahalanobis distance-based outlier detection method. Based on our results, we recommend the incorporation of cSNPs into future transcriptome array designs as intrinsic markers for sample tracking.

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